Clairvoyance: Intelligent Route Planning for Electric Buses Based on Urban Big Data
Xiangyong Lu, Kaoru Ota, Mianxiong Dong, Chen Yu, and Hai Jin

TL;DR
This paper introduces Clairvoyance, an intelligent route planning system for electric buses that uses deep neural networks to predict future trips and emissions, optimizing routes to reduce carbon footprint and improve efficiency.
Contribution
The paper presents a novel neural network-based system for dynamic electric bus route planning using urban big data, improving over traditional survey methods.
Findings
Neural network algorithms outperform baseline methods.
Routes recommended reduce peak carbon emissions.
System effectively utilizes urban big data for planning.
Abstract
Nowadays many cities around the world have introduced electric buses to optimize urban traffic and reduce local carbon emissions. In order to cut carbon emissions and maximize the utility of electric buses, it is important to choose suitable routes for them. Traditionally, route selection is on the basis of dedicated surveys, which are costly in time and labor. In this paper, we mainly focus attention on planning electric bus routes intelligently, depending on the unique needs of each region throughout the city. We propose Clairvoyance, a route planning system that leverages a deep neural network and a multilayer perceptron to predict the future people's trips and the future transportation carbon emission in the whole city, respectively. Given the future information of people's trips and transportation carbon emission, we utilize a greedy mechanism to recommend bus routes for electric…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Transportation and Mobility Innovations · Traffic Prediction and Management Techniques
